» Articles » PMID: 34692189

Student Becomes Teacher: Training Faster Deep Learning Lightweight Networks for Automated Identification of Optical Coherence Tomography B-scans of Interest Using a Student-teacher Framework

Abstract

This work explores a student-teacher framework that leverages unlabeled images to train lightweight deep learning models with fewer parameters to perform fast automated detection of optical coherence tomography B-scans of interest. Twenty-seven lightweight models (LWMs) from four families of models were trained on expert-labeled B-scans (∼70 K) as either "abnormal" or "normal", which established a baseline performance for the models. Then the LWMs were trained from random initialization using a student-teacher framework to incorporate a large number of unlabeled B-scans (∼500 K). A pre-trained ResNet50 model served as the teacher network. The ResNet50 teacher model achieved 96.0% validation accuracy and the validation accuracy achieved by the LWMs ranged from 89.6% to 95.1%. The best performing LWMs were 2.53 to 4.13 times faster than ResNet50 (0.109s to 0.178s vs. 0.452s). All LWMs benefitted from increasing the training set by including unlabeled B-scans in the student-teacher framework, with several models achieving validation accuracy of 96.0% or higher. The three best-performing models achieved comparable sensitivity and specificity in two hold-out test sets to the teacher network. We demonstrated the effectiveness of a student-teacher framework for training fast LWMs for automated B-scan of interest detection leveraging unlabeled, routinely-available data.

Citing Articles

Applying Lightweight Deep Learning-Based Virtual Vision Sensing Technology to Realize and Develop New Media Interactive Art Installation.

Luo L Comput Intell Neurosci. 2022; 2022:9119316.

PMID: 35860644 PMC: 9293493. DOI: 10.1155/2022/9119316.


Trustworthy AI: Closing the gap between development and integration of AI systems in ophthalmic practice.

Gonzalez-Gonzalo C, Thee E, Klaver C, Lee A, Schlingemann R, Tufail A Prog Retin Eye Res. 2021; 90:101034.

PMID: 34902546 PMC: 11696120. DOI: 10.1016/j.preteyeres.2021.101034.

References
1.
Alqudah A . AOCT-NET: a convolutional network automated classification of multiclass retinal diseases using spectral-domain optical coherence tomography images. Med Biol Eng Comput. 2019; 58(1):41-53. DOI: 10.1007/s11517-019-02066-y. View

2.
Peng H, Gong W, Beckmann C, Vedaldi A, Smith S . Accurate brain age prediction with lightweight deep neural networks. Med Image Anal. 2020; 68:101871. PMC: 7610710. DOI: 10.1016/j.media.2020.101871. View

3.
Li F, Chen H, Liu Z, Zhang X, Jiang M, Wu Z . Deep learning-based automated detection of retinal diseases using optical coherence tomography images. Biomed Opt Express. 2019; 10(12):6204-6226. PMC: 6913386. DOI: 10.1364/BOE.10.006204. View

4.
Bussel I, Wollstein G, Schuman J . OCT for glaucoma diagnosis, screening and detection of glaucoma progression. Br J Ophthalmol. 2013; 98 Suppl 2:ii15-9. PMC: 4208340. DOI: 10.1136/bjophthalmol-2013-304326. View

5.
Ferrara D, Silver R, Louzada R, Novais E, Collins G, Seddon J . Optical Coherence Tomography Features Preceding the Onset of Advanced Age-Related Macular Degeneration. Invest Ophthalmol Vis Sci. 2017; 58(9):3519-3529. PMC: 5512971. DOI: 10.1167/iovs.17-21696. View